论文标题
使用泰勒多项式的多尺度轨道不确定性传播
Multifidelity Orbit Uncertainty Propagation using Taylor Polynomials
论文作者
论文摘要
为非线性轨道不确定性传播开发了一种新的多重方法。与完全高保真的对应物相比,这种方法可确保提高计算效率和有限的准确性损失。最初的不确定性被建模为高斯分布的加权总和,其数字在线适应以满足所需的准确性。根据需要,单变量拆分库用于沿最大非线性方向拆分混合物组件。差异代数技术用于传播这些高斯内核,并计算拆分决策和方向识别所需的非线性度量。使用低保真动力学模型计算动力学流量的泰勒膨胀,以最大程度地提高计算效率并使用选定的高保真样品进行校正,以最大程度地减少准确性损失。分别将SGP4理论和数值传播作为低保真模型的不同动力学制度的不同动力学制度证明了所提出方法的有效性。
A new multifidelity method is developed for nonlinear orbit uncertainty propagation. This approach guarantees improved computational efficiency and limited accuracy losses compared to fully high-fidelity counterparts. The initial uncertainty is modeled as a weighted sum of Gaussian distributions whose number is adapted online to satisfy the required accuracy. As needed, univariate splitting libraries are used to split the mixture components along the direction of maximum nonlinearity. Differential Algebraic techniques are used to propagate these Gaussian kernels and compute a measure of nonlinearity required for the split decision and direction identification. Taylor expansions of the flow of the dynamics are computed using a low-fidelity dynamical model to maximize computational efficiency and corrected with selected high-fidelity samples to minimize accuracy losses. The effectiveness of the proposed method is demonstrated for different dynamical regimes combining SGP4 theory and numerical propagation as low- and high-fidelity models respectively.